Full-Time

Software Engineer

Artificial Intelligence

DataVisor

DataVisor

51-200 employees

Real-time fraud detection & risk management

Compensation Overview

$130k - $250k/yr

+ Performance Bonus + Equity Options

Mountain View, CA, USA

In Person

Category
Software Engineering (2)
,
Required Skills
LLM
Kubernetes
Python
Apache Spark
Machine Learning
Apache Kafka
Java
OpenAI
Clickhouse
Docker
AWS
Go
C/C++
Requirements
  • Experience: 2+ years of professional software engineering experience building and shipping production systems (backend services, data platforms, or ML/AI infrastructure), ideally for customer-facing SaaS products or internal platform tools.
  • Education: Bachelor’s and Master’s degree in Computer Science (or a closely related field) with a focus in Machine Learning or Artificial Intelligence.
  • System Architecture: Proven ability to design and implement distributed, cloud-native systems for high-throughput, low-latency applications. Experience with AWS and containerization (Docker/Kubernetes) is required.
  • Coding Proficiency: Strong, production-grade skills in Python (primary language for services and tooling), plus experience with at least one additional lower-level programming language such as Java (Go or C++ also a plus).
  • Big Data Technologies: Hands-on experience with distributed data frameworks such as Spark, Kafka, or Flink.
  • Machine Learning Foundations: Solid breadth and depth in ML concepts (e.g., supervised vs. unsupervised learning, feature engineering, embeddings, evaluation metrics like Precision/Recall and AUC).
  • Collaboration & Ownership: Demonstrated ability to work cross-functional, take end-to-end ownership of services, and operate in a fast-paced, high-impact environment.
Responsibilities
  • Consortium Data Engineering: Architect and maintain high-throughput data pipelines (using technologies such as Spark, Kafka, or Flink) to ingest, process, and aggregate real-time signals—such as device fingerprints and behavioral biometrics—into our central intelligence graph.
  • High-Scale System Design: Design and optimize distributed systems to support our global data network, ensuring the platform can handle 10,000+ Transactions Per Second (TPS) with P99 latency under 150ms.
  • Agentic Flow & AI Application Development: Build agentic flows and AI applications by leveraging state-of-the-art, out-of-the-box LLMs (e.g., OpenAI, Anthropic, Google) to enable natural language interaction, intelligent rule merging, and automated fraud strategy recommendations.
  • AI Agent Workflow Ownership: Own and extend the internal AI agent tool and workflows used by the Solutions team for rule and feature creation, rule tuning, and alert analysis, ensuring reliable deployments across sandbox, preprod, and production solution tenants.
  • Label & Rule Tuning Automation: Build map-reduce style LLM workflows and analytics pipelines (e.g., ClickHouse, Spark) for large-scale label investigation, weak classifier discovery, and FN/FP triage to accelerate solution onboarding and improve detection coverage.
  • Productionize ML Pipelines: Collaborate with Data Scientists to deploy and maintain pipelines for both Unsupervised (UML) and Supervised (SML) models, integrating them with our APIs to enable real-time scoring and decisioning. Hands-on ownership of classic ML modeling is a plus, but not a strict requirement.
  • Privacy-First Architecture: Implement robust security measures, including tokenization and hashing, to ensure PII privacy and compliance across our shared intelligence network.
  • Cross-Functional Collaboration: Work closely with Data Science, Product, Strategy, Delivery, and Engineering teams to develop, validate, and optimize machine learning–driven features and AI-powered workflows.
Desired Qualifications
  • Experience building or integrating LLM-powered agent workflows (e.g., LangChain/LangGraph, multi-agent orchestration, tool calling, or RAG architectures) for production or internal platforms.
  • Experience deploying or maintaining machine learning models (supervised or unsupervised) in production environments.
  • Experience working with analytical databases and large-scale data exploration (e.g., ClickHouse or other columnar data stores) is a plus.
  • Background in real-time decision engines or stateful stream processing.
  • Domain knowledge in fraud or risk (fraud detection, credit risk, payments, or trust & safety) is a strong plus but not required.

DataVisor offers a fraud detection and risk management platform for fintech and cybersecurity, helping financial institutions, e-commerce platforms, and online services detect and prevent fraudulent activity in real time. The core product integrates with clients’ existing data systems through APIs, supporting real-time or batch data processing to identify suspicious patterns. Machine learning analyzes large datasets to spot indicators of fraud and continuously improve detection accuracy. The company differentiates itself by providing a flexible, API-based integration that fits into clients’ current workflows and data environments, enabling real-time prevention across diverse use cases. Revenue comes from a subscription model that gives clients ongoing access to the platform and updates. The goal is to help organizations protect their operations and customers by staying ahead of increasingly sophisticated fraud schemes.

Company Size

51-200

Company Stage

Late Stage VC

Total Funding

$94.5M

Headquarters

Mountain View, California

Founded

2013

Simplify Jobs

Simplify's Take

What believers are saying

  • Vera boosts detection coverage 2-3x and cuts false positives 40%.
  • NASA Federal Credit Union reduces investigation time 20-30x.
  • authID partnership enhances biometric authentication integration.

What critics are saying

  • Feedzai's agentic AI captures 25% more fintech share in 6-12 months.
  • SEC fines DataVisor $15M, halting financial sales in 3-6 months.
  • OpenAI-Sift gen AI undercuts pricing by 60% in 9-15 months.

What makes DataVisor unique

  • Vera launches conversational AI agents for fraud and AML operations.
  • Patented UML detects unknown fraud patterns proactively in real-time.
  • Unified platform integrates fraud, AML, KYC with end-to-end workflows.

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Benefits

Health Insurance

Stock Options

401(k) Company Match

Paid Vacation

Flexible Work Hours

Company Equity

Growth & Insights and Company News

Headcount

6 month growth

0%

1 year growth

0%

2 year growth

1%
The Associated Press
Apr 14th, 2026
DataVisor launches Vera, first conversational AI agents for financial crime prevention

DataVisor has launched Vera, the first suite of conversational AI agents for financial crime prevention. The platform allows fraud and anti-money laundering teams to give instructions in plain language, with AI agents executing them across the entire fraud and AML lifecycle. The launch addresses the AI "readiness gap" identified in DataVisor's 2026 report, which found only 23% of institutions have adequate infrastructure to combat AI-driven fraud, whilst 74% of leaders view it as a top threat. Early results from customers including NASA Federal Credit Union show detection coverage increases of two to three times, false positives reduced by over 40%, and investigation time cut by 20 to 30 times. The platform automates tasks from detection strategy design to regulatory reporting whilst maintaining enterprise-grade governance and control.

Business Wire
Apr 18th, 2025
DataVisor Recognized as a Leader by Top Industry Analyst Firm in its Most Recent AML Solutions Report

To see why DataVisor was named a Leader, access the full report, "The Forrester Wave(TM): Anti-Money-Laundering Solutions, Q2 2025[ˮ].

FinTecBuzz
Mar 7th, 2025
DataVisor Named to 2025 Forbes Fintech 50

DataVisor named to 2025 Forbes Fintech 50.

Boland Hill Media, LLC
Dec 9th, 2024
DataVisor Launches Real Time Fraud Detection

DataVisor launches real time Fraud detection.

Investment Executive
Oct 18th, 2024
Tech roundup: BMO Insurance now using Microsoft AI in field underwriting

PlannrCRM integrates with Conquest Planning.